| Literature DB >> 36227399 |
Kelsey E Magee1, Arin Connell2, Alison E Hipwell3,4, Daniel Shaw4, Erika Westling5, Kate Keenan6, Elizabeth Stormshak7, Thao Ha8, Stephanie Stepp3,4.
Abstract
Integrative data analysis (IDA) was used to derive developmental models of depression, externalizing problems, and self-regulatory processes in three prevention trials of the Family Check-Up and one longitudinal, community-based study of girls over a 10-year span covering early to late adolescence (N = 4,773; 74.9% female, 41.7% white). We used moderated nonlinear factor analysis to create harmonized scores based on all available items for a given participant in the pooled dataset while accounting for potential differences in both the latent factor and the individual items as a function of observed covariates. We also conducted latent growth model analyses to examine developmental trajectories of risk. Results indicated a bidirectional relationship between depression and externalizing problems, with greater baseline externalizing problems and depression predicting growth in inhibitory control difficulties. Furthermore, initial level of inhibitory control difficulties was associated with growth in depression. We did not, however, find a relationship between early inhibitory control difficulties and growth in externalizing problems. This work illustrates the utility of IDA techniques to harmonize data across multiple studies to identify risk factors for the development of depression and externalizing problems that can be targeted by prevention efforts.Entities:
Keywords: Depression; Developmental models; Externalizing; Inhibitory control; Integrated data analysis (IDA); Moderated nonlinear factor analysis (MNLFA)
Year: 2022 PMID: 36227399 DOI: 10.1007/s11121-022-01441-w
Source DB: PubMed Journal: Prev Sci ISSN: 1389-4986